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Quantifying CO2 Emission Reduction Through Spatial Partitioning in Deep Learning Recommendation System Workloads

The resource demand of modern applications has been increasing at a dizzying pace. This rising prominence is accompanied by a rising concern for the greenhouse gas emissions and carbon footprints… Click to show full abstract

The resource demand of modern applications has been increasing at a dizzying pace. This rising prominence is accompanied by a rising concern for the greenhouse gas emissions and carbon footprints of these applications. Deep learning recommendation models (DLRMs) are one example of the important models that are rising in importance and ubiquity in data centers. In this work, we analyze the impact of spatial partitioning of workloads that can decouple the geographical constraint and thus achieve reduced CO2 emissions by using DLRM online training as the workload under study.

Keywords: deep learning; learning recommendation; co2 emission; quantifying co2; spatial partitioning

Journal Title: IEEE Micro
Year Published: 2024

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